Experimental Performance Evaluation of an Enhanced Deep Neural Network Model for Phishing Intrusion Detection in Web-Enabled Financial Information Systems

Authors

  • Allen, Akinkitan Ajose Department of Computer Science, Lead City University, Ibadan, Oyo State, Nigeria Author
  • Akinola, Solomon Olalekan Department of Computer Science, University of Ibadan, Oyo State, Nigeria Author

Abstract

This study proposes an enhanced Deep Neural Network (Deep-NN) model for phishing intrusion detection in web-enabled financial information systems. The approach combines Principal Component Analysis (PCA) for feature optimization with both supervised and unsupervised learning techniques to improve detection accuracy and efficiency. Data pre-processing and dimensionality reduction were implemented in Python (Spyder IDE), while MATLAB was used for model training, validation, and testing. Performance was evaluated using regression (R), mean square error (MSE), and Jaccard similarity index. Results show a 90% classification precision with a 10% error rate, outperforming existing models in the literature. The findings demonstrate the model’s potential to strengthen cyber defense mechanisms in financial systems through robust and adaptive phishing detection.

Keywords:

Cybersecurity, Deep Neural Network, Intrusion Detection Systems, Machine Learning, Phishing Detection

DOI:

https://doi.org/10.70382/hujsdr.v9i9.006

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Published

2025-09-04

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How to Cite

Allen, Akinkitan Ajose, & Akinola, Solomon Olalekan. (2025). Experimental Performance Evaluation of an Enhanced Deep Neural Network Model for Phishing Intrusion Detection in Web-Enabled Financial Information Systems. Journal of Scientific Development Research, 9(9). https://doi.org/10.70382/hujsdr.v9i9.006

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